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The Sample Complexity Of ERMs In Stochastic Convex Optimization

9 November 2023
Dan Carmon
Roi Livni
Amir Yehudayoff
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Abstract

Stochastic convex optimization is one of the most well-studied models for learning in modern machine learning. Nevertheless, a central fundamental question in this setup remained unresolved: "How many data points must be observed so that any empirical risk minimizer (ERM) shows good performance on the true population?" This question was proposed by Feldman (2016), who proved that Ω(dϵ+1ϵ2)\Omega(\frac{d}{\epsilon}+\frac{1}{\epsilon^2})Ω(ϵd​+ϵ21​) data points are necessary (where ddd is the dimension and ϵ>0\epsilon>0ϵ>0 is the accuracy parameter). Proving an ω(dϵ+1ϵ2)\omega(\frac{d}{\epsilon}+\frac{1}{\epsilon^2})ω(ϵd​+ϵ21​) lower bound was left as an open problem. In this work we show that in fact O~(dϵ+1ϵ2)\tilde{O}(\frac{d}{\epsilon}+\frac{1}{\epsilon^2})O~(ϵd​+ϵ21​) data points are also sufficient. This settles the question and yields a new separation between ERMs and uniform convergence. This sample complexity holds for the classical setup of learning bounded convex Lipschitz functions over the Euclidean unit ball. We further generalize the result and show that a similar upper bound holds for all symmetric convex bodies. The general bound is composed of two terms: (i) a term of the form O~(dϵ)\tilde{O}(\frac{d}{\epsilon})O~(ϵd​) with an inverse-linear dependence on the accuracy parameter, and (ii) a term that depends on the statistical complexity of the class of linear\textit{linear}linear functions (captured by the Rademacher complexity). The proof builds a mechanism for controlling the behavior of stochastic convex optimization problems.

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